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Signal reconstruction with applications to chaos-based communications.

机译:信号重建及其在基于混沌的通信中的应用。

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摘要

This thesis addresses the signal reconstruction problem relevant to chaos-based communication systems. Six specific phases of studies are described. The first phase reviews the basic properties of chaotic signals, establishing the suitability of chaotic signals for use in communication. Existing theories, techniques, methods and practical issues related to chaos-based communications are discussed. The second phase reviews the state of the art in signal reconstruction, with special emphasis laid on deterministic chaotic signals. The problems associated with applying the reconstruction theory are described. To tackle the practical problems of reconstructing chaotic dynamics from non-ideal observed samples, neural networks are used as modelling tools. In the third phase, the background theories of neural networks are reviewed, the focus being two specific kinds of neural networks: radial-basis-function neural networks and recurrent neural networks. In the fourth phase, the reconstruction theory is generalized to time-varying (continuous-time and discrete-time) chaotic systems based on the observer approach. In the fifth phase, an original contribution to reconstruction of chaotic dynamics from noisy observed samples is described in detail. Specifically, a modified radial-basis-function neural network incorporating a (adaptive) learning algorithm is used to realize the reconstruction task. Also, a specific application in chaos-based digital communication systems is discussed. In the sixth phase, the reconstruction of chaotic dynamics from distorted and noisy observed samples is studied. Essentially, the channel equalization problem in chaos-based communication systems is addressed. This problem is formulated in the light of signal reconstruction, and is solved by using a modified recurrent neural network incorporating a learning algorithm.
机译:本文解决了与基于混沌的通信系统相关的信号重建问题。描述了六个具体的研究阶段。第一阶段回顾了混沌信号的基本特性,确定了混沌信号在通信中的适用性。讨论了与基于混沌的通信有关的现有理论,技术,方法和实践问题。第二阶段回顾了信号重建的最新技术,特别强调确定性混沌信号。描述了与应用重构理论相关的问题。为了解决从非理想观察样本重建混沌动力学的实际问题,将神经网络用作建模工具。在第三阶段,回顾了神经网络的背景理论,重点是两种特定类型的神经网络:径向基函数神经网络和递归神经网络。在第四阶段,基于观察者方法,将重构理论推广到时变(连续时间和离散时间)混沌系统。在第五阶段,详细描述了从嘈杂的观测样本重建混沌动力学的原始贡献。具体地,结合(自适应)学习算法的改进的径向基函数神经网络用于实现重建任务。而且,讨论了在基于混沌的数字通信系统中的特定应用。在第六阶段,研究了从失真和嘈杂的观测样本中重建混沌动力学。本质上,解决了基于混沌的通信系统中的信道均衡问题。这个问题是根据信号重建提出的,可以通过使用结合了学习算法的改进的递归神经网络来解决。

著录项

  • 作者

    Feng, Jiuchao.;

  • 作者单位

    Hong Kong Polytechnic (People's Republic of China).;

  • 授予单位 Hong Kong Polytechnic (People's Republic of China).;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2002
  • 页码 158 p.
  • 总页数 158
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;
  • 关键词

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